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Applied Data Science, Modeling Intern
Location
Texas
Posted
118 days ago
Salary
$6K / year
Seniority
Entry Level
Job Description
Applied Data Science, Modeling Intern
Students + Startups Internship Program
• Data Aggregation & Cleaning • Yield Prediction Modeling • Model Validation • Dashboard Development • Process Documentation
Job Requirements
- Strong proficiency in Excel or Google Sheets
- Comfort with:
- ○ Basic statistics
- ○ Regression and forecasting concepts
- ○ Scenario analysis
- Ability to work independently and manage tasks
- Interest in agriculture, climate, or data-driven decision-making
- Preferred (Not Required)
- ○ Python or R for data analysis
- ○ Experience with dashboards or data visualization tools
- ○ Exposure to agriculture, economics, or commodity markets
Benefits
- Students receive a $6,000 stipend for the summer
- Direct mentorship from the founder of Dbuntu
- Weekly check-ins focused on problem-solving and learning
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